Abstract

In this study the ability of Autoregressive Moving Average (ARMA) and Autoregressive Integrated Moving Average (ARIMA) models in forecasting the monthly inflow of Dez dam reservoir located in Teleh Zang station in Dez dam upstream i s estimated. ARIMA model has found a widespread application in many practical sciences. In addition, dam reservoir inflow forecasting is done by some methods such as ordinary linear regression, ARMA and artificial neural networks. On the other hand, application of both ARMA and ARIMA models simultaneously in order to compare their ability in autoregressive forecast of monthly inflow of dam reservoir has not been carried out i n previous researches. Therefore, this paper attempts to forecast the inflow of Dez dam reservoir by using ARMA and ARIMA models while increasing the number of parameters in order to increase the forecast accuracy to four parameters and comparing them. In ARMA and ARIMA models, the polynomial was derived respectively with four and s ix parameters to forecast the inflow. By comparing root mean square error of the model, it was determi ned that ARIMA model can forecast inflow to the Dez reservoir from 12 months ago with lower error t han the ARMA model.

Highlights

  • Baareh et al (2006) used the artificial neuralMore accurate estimation of the monthly inflow to the reservoir is significantly important in water resources management due to the importance of management and operation of reservoirs, hydroelectric energy generation and structures designed to control

  • The monthly inflow to the reservoir has been forecast by two models of Autoregressive Moving Average (ARMA) and Autoregressive Integrated Moving Average (ARIMA)

  • An ARIMA model is a generalization of an ARMA model

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Summary

INTRODUCTION

More accurate estimation of the monthly inflow to the reservoir is significantly important in water resources management due to the importance of management and operation of reservoirs, hydroelectric energy generation and structures designed to control. This study aims ARMA and ARIMA models parameters that perform to forecast inflow to Dez reservoir using ARMA and by PACF and ACF curves (Cryer and Kung-Sik, ARIMA models, by increasing the number of 2008; Mohammadi et al, 2006). These curves are parameters to evaluate the accuracy of forecast to depicted in the Fig. 1 and 2 which the axis line four parameters, according to discharge of Taleh shows the delay time and the vertical axis showed. Non-seasonal models are used in this study, firstly the non-seasonal and seasonal models were

RESULTS
Findings
DISCUSSION
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